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Reliable autonomous vehicle control - a chance constrained stochastic MPC approach

机译:可靠的自动车辆控制-机会受限的随机MPC方法

摘要

In recent years, there is a growing interest in the development of systems capable of performing tasks with a high level of autonomy without human supervision. This kind of systems are known as autonomous systems and have been studied in many industrial applications such as automotive, aerospace and industries. Autonomous vehicle have gained a lot of interest in recent years and have been considered as a viable solution to minimize the number of road accidents. Due to the complexity of dynamic calculation and the physical restrictions in autonomous vehicle, for example, deterministic model predictive control is an attractive control technique to solve the problem of path planning and obstacle avoidance. However, an autonomous vehicle should be capable of driving adaptively facing deterministic and stochastic events on the road. Therefore, control design for the safe, reliable and autonomous driving should consider vehicle model uncertainty as well uncertain external influences. The stochastic model predictive control scheme provides the most convenient scheme for the control of autonomous vehicles on moving horizons, where chance constraints are to be used to guarantee the reliable fulfillment of trajectory constraints and safety against static and random obstacles. To solve this kind of problems is known as chance constrained model predictive control. Thus, requires the solution of a chance constrained optimization on moving horizon. According to the literature, the major challenge for solving chance constrained optimization is to calculate the value of probability. As a result, approximation methods have been proposed for solving this task.In the present thesis, the chance constrained optimization for the autonomous vehicle is solved through approximation method, where the probability constraint is approximated by using a smooth parametric function. This methodology presents two approaches that allow the solution of chance constrained optimization problems in inner approximation and outer approximation. The aim of this approximation methods is to reformulate the chance constrained optimizations problems as a sequence of nonlinear programs. Finally, three case studies of autonomous vehicle for tracking and obstacle avoidance are presented in this work, in which three levels probability of reliability are consideredfor the optimal solution.
机译:近年来,人们对开发无需人工监督就能执行高度自治任务的系统的兴趣日益浓厚。这种系统被称为自主系统,并且已经在许多工业应用中进行了研究,例如汽车,航空航天和工业。近年来,自动驾驶汽车引起了广泛的兴趣,并被认为是使道路交通事故最少的可行解决方案。例如,由于动态计算的复杂性和自动驾驶汽车的物理限制,确定性模型预测控制是解决路径规划和避障问题的一种有吸引力的控制技术。然而,自动驾驶汽车应该能够自适应地驾驶道路上的确定性和随机事件。因此,安全,可靠和自动驾驶的控制设计应考虑车辆模型的不确定性以及不确定的外部影响。随机模型预测控制方案为在运动地平线上控制自动驾驶车辆提供了最方便的方案,在这种情况下,机会约束将被用来保证轨迹约束的可靠实现以及对静态和随机障碍物的安全性。解决这类问题的方法称为机会约束模型预测控制。因此,需要解决运动水平上机会受限优化的问题。根据文献,解决机会约束优化的主要挑战是计算概率值。因此,提出了一种近似方法来解决该任务。本文通过近似方法解决了自动驾驶汽车的机会约束优化问题,其中使用平滑参数函数近似了概率约束。该方法论提出了两种方法,可以求解内逼近和外逼近中的机会约束优化问题。这种近似方法的目的是将机会约束优化问题重新构造为一系列非线性程序。最后,本文对自动驾驶车辆进行跟踪和避障的三个案例进行了研究,其中考虑了三个级别的可靠性概率作为最优解决方案。

著录项

  • 作者

    Poma Aliaga Luis Felipe;

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  • 年度 2017
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  • 原文格式 PDF
  • 正文语种 eng
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